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#define SCALAR double |
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#include <iostream> |
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#include <algorithm> |
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#include "BenchTimer.h" |
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#include "BenchSparseUtil.h" |
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#define SPMV_BENCH(CODE) BENCH(t,tries,repeats,CODE); |
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int main(int argc, char *argv[]) |
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{ |
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int size = 10000; |
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int rows = size; |
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int cols = size; |
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int nnzPerCol = 40; |
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int tries = 2; |
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int repeats = 2; |
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bool need_help = false; |
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for(int i = 1; i < argc; i++) |
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{ |
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if(argv[i][0] == 'r') |
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{ |
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rows = atoi(argv[i]+1); |
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} |
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else if(argv[i][0] == 'c') |
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{ |
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cols = atoi(argv[i]+1); |
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} |
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else if(argv[i][0] == 'n') |
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{ |
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nnzPerCol = atoi(argv[i]+1); |
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} |
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else if(argv[i][0] == 't') |
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{ |
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tries = atoi(argv[i]+1); |
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} |
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else if(argv[i][0] == 'p') |
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{ |
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repeats = atoi(argv[i]+1); |
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} |
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else |
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{ |
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need_help = true; |
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} |
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} |
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if(need_help) |
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{ |
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std::cout << argv[0] << " r<nb rows> c<nb columns> n<non zeros per column> t<nb tries> p<nb repeats>\n"; |
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return 1; |
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} |
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std::cout << "SpMV " << rows << " x " << cols << " with " << nnzPerCol << " non zeros per column. (" << repeats << " repeats, and " << tries << " tries)\n\n"; |
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EigenSparseMatrix sm(rows,cols); |
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DenseVector dv(cols), res(rows); |
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dv.setRandom(); |
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BenchTimer t; |
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while (nnzPerCol>=4) |
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{ |
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std::cout << "nnz: " << nnzPerCol << "\n"; |
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sm.setZero(); |
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fillMatrix2(nnzPerCol, rows, cols, sm); |
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#ifdef DENSEMATRIX |
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{ |
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DenseMatrix dm(rows,cols), (rows,cols); |
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eiToDense(sm, dm); |
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SPMV_BENCH(res = dm * sm); |
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std::cout << "Dense " << t.value()/repeats << "\t"; |
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SPMV_BENCH(res = dm.transpose() * sm); |
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std::cout << t.value()/repeats << endl; |
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} |
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#endif |
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{ |
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SPMV_BENCH(res.noalias() += sm * dv; ) |
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std::cout << "Eigen " << t.value()/repeats << "\t"; |
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SPMV_BENCH(res.noalias() += sm.transpose() * dv; ) |
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std::cout << t.value()/repeats << endl; |
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} |
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#ifdef CSPARSE |
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{ |
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std::cout << "CSparse \n"; |
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cs *csm; |
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eiToCSparse(sm, csm); |
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} |
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#endif |
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#ifdef OSKI |
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{ |
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oski_matrix_t om; |
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oski_vecview_t ov, ores; |
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oski_Init(); |
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om = oski_CreateMatCSC(sm._outerIndexPtr(), sm._innerIndexPtr(), sm._valuePtr(), rows, cols, |
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SHARE_INPUTMAT, 1, INDEX_ZERO_BASED); |
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ov = oski_CreateVecView(dv.data(), cols, STRIDE_UNIT); |
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ores = oski_CreateVecView(res.data(), rows, STRIDE_UNIT); |
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SPMV_BENCH( oski_MatMult(om, OP_NORMAL, 1, ov, 0, ores) ); |
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std::cout << "OSKI " << t.value()/repeats << "\t"; |
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SPMV_BENCH( oski_MatMult(om, OP_TRANS, 1, ov, 0, ores) ); |
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std::cout << t.value()/repeats << "\n"; |
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t.reset(); |
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t.start(); |
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oski_SetHintMatMult(om, OP_NORMAL, 1.0, SYMBOLIC_VEC, 0.0, SYMBOLIC_VEC, ALWAYS_TUNE_AGGRESSIVELY); |
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oski_TuneMat(om); |
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t.stop(); |
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double tuning = t.value(); |
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SPMV_BENCH( oski_MatMult(om, OP_NORMAL, 1, ov, 0, ores) ); |
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std::cout << "OSKI tuned " << t.value()/repeats << "\t"; |
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SPMV_BENCH( oski_MatMult(om, OP_TRANS, 1, ov, 0, ores) ); |
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std::cout << t.value()/repeats << "\t(" << tuning << ")\n"; |
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oski_DestroyMat(om); |
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oski_DestroyVecView(ov); |
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oski_DestroyVecView(ores); |
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oski_Close(); |
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} |
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#endif |
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#ifndef NOUBLAS |
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{ |
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using namespace boost::numeric; |
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UblasMatrix um(rows,cols); |
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eiToUblas(sm, um); |
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boost::numeric::ublas::vector<Scalar> uv(cols), ures(rows); |
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Map<Matrix<Scalar,Dynamic,1> >(&uv[0], cols) = dv; |
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Map<Matrix<Scalar,Dynamic,1> >(&ures[0], rows) = res; |
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SPMV_BENCH(ublas::axpy_prod(um, uv, ures, true)); |
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std::cout << "ublas " << t.value()/repeats << "\t"; |
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SPMV_BENCH(ublas::axpy_prod(boost::numeric::ublas::trans(um), uv, ures, true)); |
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std::cout << t.value()/repeats << endl; |
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} |
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#endif |
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#ifndef NOGMM |
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{ |
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GmmSparse gm(rows,cols); |
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eiToGmm(sm, gm); |
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std::vector<Scalar> gv(cols), gres(rows); |
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Map<Matrix<Scalar,Dynamic,1> >(&gv[0], cols) = dv; |
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Map<Matrix<Scalar,Dynamic,1> >(&gres[0], rows) = res; |
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SPMV_BENCH(gmm::mult(gm, gv, gres)); |
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std::cout << "GMM++ " << t.value()/repeats << "\t"; |
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SPMV_BENCH(gmm::mult(gmm::transposed(gm), gv, gres)); |
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std::cout << t.value()/repeats << endl; |
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} |
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#endif |
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#ifndef NOMTL |
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{ |
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MtlSparse mm(rows,cols); |
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eiToMtl(sm, mm); |
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mtl::dense_vector<Scalar> mv(cols, 1.0); |
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mtl::dense_vector<Scalar> mres(rows, 1.0); |
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SPMV_BENCH(mres = mm * mv); |
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std::cout << "MTL4 " << t.value()/repeats << "\t"; |
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SPMV_BENCH(mres = trans(mm) * mv); |
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std::cout << t.value()/repeats << endl; |
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} |
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#endif |
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std::cout << "\n"; |
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if(nnzPerCol==1) |
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break; |
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nnzPerCol -= nnzPerCol/2; |
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} |
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return 0; |
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} |
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